Workload patterns for quality-driven dynamic cloud service configuration and auto-scaling
Zhang, Li, Zhang, Yichuan, Jamshidi, Pooyan, Xu, Lei and Pahl, ClausORCID: 0000-0002-9049-212X
(2014)
Workload patterns for quality-driven dynamic cloud service configuration and auto-scaling.
In: 7th IEEE / ACM International Conference on Utility and Cloud Computing UCC'2014, 8-11 Dec 2014, London, UK.
Cloud service providers negotiate SLAs for customer services they offer based on the reliability of performance and availability of their lower-level platform infrastructure. While availability management is more mature, performance management is less reliable. In order to support an iterative approach that supports the initial static infrastructure configuration as well as dynamic reconfiguration and auto-scaling, an accurate and efficient solution is required. We propose a prediction-based technique that combines a pattern matching approach with a traditional collaborative filtering solution to meet the accuracy and efficiency requirements. Service workload patterns abstract common infrastructure workloads from monitoring logs and act as a part of a first-stage high-performant configuration mechanism before more complex traditional methods are considered. This enhances current reactive rule-based scalability approaches and basic prediction techniques based on for example exponential smoothing.
Item Type:
Conference or Workshop Item (Paper)
Event Type:
Conference
Refereed:
Yes
Uncontrolled Keywords:
Auto-scaling; Cloud Configuration; Collaborative Filtering; QoS Prediction; Quality of Service; Web and Cloud Services; Workload Pattern Mining